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The Prognostic Value of Adaptive Nuclear Texture Features from Patient Gray Level Entropy Matrices in Early Stage Ovarian Cancer

Background: Nuclear texture analysis gives information about the spatial arrangement of the pixel gray levels in a digitized microscopic nuclear image, providing texture features that may be used as quantitative tools for prognosis of human cancer. The aim of the study was to evaluate the prognostic...

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Autores principales: Nielsen, Birgitte, Albregtsen, Fritz, Kildal, Wanja, Abeler, Vera M., Kristensen, Gunnar B., Danielsen, Håvard E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: IOS Press 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4605591/
https://www.ncbi.nlm.nih.gov/pubmed/22596183
http://dx.doi.org/10.3233/ACP-2012-0065
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author Nielsen, Birgitte
Albregtsen, Fritz
Kildal, Wanja
Abeler, Vera M.
Kristensen, Gunnar B.
Danielsen, Håvard E.
author_facet Nielsen, Birgitte
Albregtsen, Fritz
Kildal, Wanja
Abeler, Vera M.
Kristensen, Gunnar B.
Danielsen, Håvard E.
author_sort Nielsen, Birgitte
collection PubMed
description Background: Nuclear texture analysis gives information about the spatial arrangement of the pixel gray levels in a digitized microscopic nuclear image, providing texture features that may be used as quantitative tools for prognosis of human cancer. The aim of the study was to evaluate the prognostic value of adaptive nuclear texture features in early stage ovarian cancer. Methods: 246 cases of early stage ovarian cancer were included in the analysis. Isolated nuclei (monolayers) were prepared from 50 μm tissue sections and stained with Feulgen-Schiff. Local gray level entropy was measured within small windows of each nuclear image and stored in gray level entropy matrices. A compact set of adaptive features was computed from these matrices. Results: Univariate Kaplan-Meier analysis showed significantly better relapse-free survival (p < 0.001) for patients with low adaptive feature values compared to patients with high adaptive feature values. The 10-year relapse-free survival was about 78% for patients with low feature values and about 52% for patients with high feature values. Adaptive features were found to be of independent prognostic significance for relapse-free survival in a multivariate analysis. Conclusion: Adaptive nuclear texture features from entropy matrices contain prognostic information and are of independent prognostic significance for relapse-free survival in early stage ovarian cancer.
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spelling pubmed-46055912015-12-13 The Prognostic Value of Adaptive Nuclear Texture Features from Patient Gray Level Entropy Matrices in Early Stage Ovarian Cancer Nielsen, Birgitte Albregtsen, Fritz Kildal, Wanja Abeler, Vera M. Kristensen, Gunnar B. Danielsen, Håvard E. Anal Cell Pathol (Amst) Other Background: Nuclear texture analysis gives information about the spatial arrangement of the pixel gray levels in a digitized microscopic nuclear image, providing texture features that may be used as quantitative tools for prognosis of human cancer. The aim of the study was to evaluate the prognostic value of adaptive nuclear texture features in early stage ovarian cancer. Methods: 246 cases of early stage ovarian cancer were included in the analysis. Isolated nuclei (monolayers) were prepared from 50 μm tissue sections and stained with Feulgen-Schiff. Local gray level entropy was measured within small windows of each nuclear image and stored in gray level entropy matrices. A compact set of adaptive features was computed from these matrices. Results: Univariate Kaplan-Meier analysis showed significantly better relapse-free survival (p < 0.001) for patients with low adaptive feature values compared to patients with high adaptive feature values. The 10-year relapse-free survival was about 78% for patients with low feature values and about 52% for patients with high feature values. Adaptive features were found to be of independent prognostic significance for relapse-free survival in a multivariate analysis. Conclusion: Adaptive nuclear texture features from entropy matrices contain prognostic information and are of independent prognostic significance for relapse-free survival in early stage ovarian cancer. IOS Press 2012 2012-05-16 /pmc/articles/PMC4605591/ /pubmed/22596183 http://dx.doi.org/10.3233/ACP-2012-0065 Text en Copyright © 2012 Hindawi Publishing Corporation and the authors.
spellingShingle Other
Nielsen, Birgitte
Albregtsen, Fritz
Kildal, Wanja
Abeler, Vera M.
Kristensen, Gunnar B.
Danielsen, Håvard E.
The Prognostic Value of Adaptive Nuclear Texture Features from Patient Gray Level Entropy Matrices in Early Stage Ovarian Cancer
title The Prognostic Value of Adaptive Nuclear Texture Features from Patient Gray Level Entropy Matrices in Early Stage Ovarian Cancer
title_full The Prognostic Value of Adaptive Nuclear Texture Features from Patient Gray Level Entropy Matrices in Early Stage Ovarian Cancer
title_fullStr The Prognostic Value of Adaptive Nuclear Texture Features from Patient Gray Level Entropy Matrices in Early Stage Ovarian Cancer
title_full_unstemmed The Prognostic Value of Adaptive Nuclear Texture Features from Patient Gray Level Entropy Matrices in Early Stage Ovarian Cancer
title_short The Prognostic Value of Adaptive Nuclear Texture Features from Patient Gray Level Entropy Matrices in Early Stage Ovarian Cancer
title_sort prognostic value of adaptive nuclear texture features from patient gray level entropy matrices in early stage ovarian cancer
topic Other
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4605591/
https://www.ncbi.nlm.nih.gov/pubmed/22596183
http://dx.doi.org/10.3233/ACP-2012-0065
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